Understanding Electric Bicycle Users’ Mode Choice Preference under Uncertainty: A Case Study of Shanghai
Abstract
:1. Introduction
2. Methodology
2.1. Value and Weighting Functions
2.2. Determination of Parameter Values
2.3. CPV Calculation
3. Case Study Set-Up
3.1. Data Collection
3.2. Risk Attitudes and Weights
3.3. Reference Point Selection
3.4. Model Validation
4. Results and Discussion
- (1)
- Old electric bicycle users may continue to choose the electric bicycle because of its advantage in saving physical strength. This kind of vehicle keeps them on the bike lanes for visiting relatives or recreation in the neighborhood;
- (2)
- The relatively high distance tolerance of the electric bicycle is found among low-income and low-educated groups. However, as travel distance extends, its comparative advantage gradually diminishes;
- (3)
- Electric bicycle users have realized that the electric bicycle is not suitable for long-distance trips and they do not repel choosing other means of transport according to specific needs;
- (4)
- When the travel distance is not quite so long (within 15 km), the electric bicycle is superior to the other three travel modes for suburban and female users;
- (5)
- Whether electric bicycle users have private cars has a great impact on their electric bicycle dependence.
5. Conclusions and Future Work
- Supposing that individual socioeconomic characteristic make a difference in electric bicycle users’ travel expectations, the study divided them into various groups and investigated expected travel time and travel cost separately. Thus, reference points in the model varied among different groups based on the risk attitudes;
- The study did not apply the traditional parameters used in Kahneman and Tversky’s experiment to all user groups. Instead, two sets of values were used, respectively, for conservative and adventurous users, which better explain their attitude under uncertain and risk conditions;
- The study adopted CPT to analyze electric bicycle users’ mode choice preference of four different means of transportation. By comparing the comprehensive CPVs of each travel mode, we saw the role electric bicycles play in transportation systems.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Attribute | Range | Proportion |
---|---|---|
Region | Urban district | 54% |
Suburban district | 46% | |
Gender | Male | 51% |
Female | 49% | |
Age | 20–30 | 13% |
30–40 | 37% | |
40–50 | 33% | |
50–60 | 17% | |
Education level | Junior high school or below | 11% |
Senior high school | 26% | |
Undergraduate | 54% | |
Postgraduate or above | 10% | |
Income per month | <2000 RMB | 13% |
2000–4000 RMB | 44% | |
4000–6000 RMB | 30% | |
>6000 RMB | 13% | |
Private car ownership | Own one or more cars | 42% |
Do not own a car | 58% |
Attribute | Group | Risk Preference | |
---|---|---|---|
RP (%) | RA (%) | ||
Region | Urban district | 62.0 | 38.0 |
Suburban district | 48.8 | 51.2 | |
Gender | Male | 67.5 | 32.5 |
Female | 51.3 | 48.7 | |
Age | Young | 68.0 | 32.0 |
Old | 48.9 | 51.1 | |
Education level | Low educated | 55.9 | 44.1 |
Highly educated | 62.7 | 37.3 | |
Income per month | Low income | 45.3 | 54.7 |
High income | 67.5 | 32.5 | |
Private car ownership | Own one or more cars | 61 | 39 |
Do not own a car | 47.3 | 52.7 |
Attribute | Group | Weight (%) | |
---|---|---|---|
Region | Urban district | 0.608 | 0.392 |
Suburban district | 0.576 | 0.424 | |
Gender | Male | 0.612 | 0.388 |
Female | 0.585 | 0.415 | |
Age | Young | 0.760 | 0.240 |
Old | 0.528 | 0.472 | |
Education level | Low educated | 0.433 | 0.567 |
Highly educated | 0.702 | 0.298 | |
Income per month | Low income | 0.551 | 0.449 |
High income | 0.803 | 0.197 | |
Private car ownership | Own one or more cars | 0.688 | 0.312 |
Do not own a car | 0.570 | 0.430 |
Group | Distance (km) | Uniform Speed | Distance (km) | Uniform Cost | ||
---|---|---|---|---|---|---|
≤10 | 10–20 | ≤10 | 10–20 | |||
Urban district | 17.32 | 17.85 | 17.50 | 0.28 | 0.21 | 0.25 |
Suburban district | 18.35 | 19.43 | 19.00 | 0.28 | 0.16 | 0.22 |
Male | 18.05 | 19.52 | 18.80 | 0.27 | 0.24 | 0.25 |
Female | 16.80 | 18.57 | 17.70 | 0.26 | 0.22 | 0.24 |
Young | 17.48 | 18.93 | 18.20 | 0.27 | 0.23 | 0.25 |
Old | 15.48 | 17.52 | 16.50 | 0.25 | 0.20 | 0.22 |
Low educated | 15.81 | 16.25 | 16.00 | 0.21 | 0.17 | 0.19 |
Highly educated | 18.28 | 18.89 | 18.50 | 0.35 | 0.25 | 0.30 |
Low income | 16.09 | 16.28 | 16.20 | 0.18 | 0.14 | 0.16 |
High income | 17.50 | 18.67 | 18.00 | 0.33 | 0.29 | 0.31 |
Own one or more cars | 18.93 | 20.02 | 19.50 | 0.34 | 0.28 | 0.31 |
Do not own a car | 16.87 | 17.23 | 17.00 | 0.26 | 0.19 | 0.23 |
Mode | Urban District Users (%) | Suburban District Users (%) | ||||
Survey Result | Model Result | Bias Value | Survey Result | Model Result | Bias Value | |
Electric bicycle | 27.0 | 25.3 | 1.7 | 36.6 | 38.5 | 1.9 |
Bus | 18.5 | 20.7 | 2.2 | 20.3 | 17.3 | 3.0 |
Subway | 41.5 | 44.1 | 2.6 | 23.3 | 27.9 | 4.6 |
Private car | 13.0 | 9.9 | 3.1 | 19.8 | 16.3 | 3.5 |
Mode | Male Users (%) | Female Users (%) | ||||
Survey Result | Model Result | Bias Value | Survey Result | Model Result | Bias Value | |
Electric bicycle | 33.0 | 30.2 | 2.8 | 30.0 | 25.8 | 4.2 |
Bus | 17.0 | 20.0 | 3.0 | 21.7 | 26.0 | 4.3 |
Subway | 36.2 | 34.7 | 1.5 | 40.0 | 37.5 | 2.5 |
Private car | 13.8 | 15.1 | 1.3 | 8.3 | 10.7 | 2.4 |
Mode | Young Users (%) | Old Users (%) | ||||
Survey Result | Model Result | Bias Value | Survey Result | Model Result | Bias Value | |
Electric bicycle | 32.0 | 30.4 | 1.6 | 30.9 | 33.1 | 0.2 |
Bus | 20.1 | 17.8 | 2.3 | 23.6 | 20.7 | 2.9 |
Subway | 26.6 | 30.6 | 4.0 | 34.4 | 30.2 | 4.2 |
Private car | 21.3 | 21.2 | 0.1 | 11.1 | 16.0 | 4.9 |
Mode | Low-Educated Users (%) | Highly-Educated Users (%) | ||||
Survey Result | Model Result | Bias Value | Survey Result | Model Result | Bias Value | |
Electric bicycle | 33.8 | 31.2 | 2.6 | 30.1 | 34.9 | 4.8 |
Bus | 25.0 | 20.9 | 4.1 | 16.1 | 11.2 | 4.9 |
Subway | 22.8 | 26.1 | 3.3 | 39.0 | 35.7 | 3.3 |
Private car | 18.4 | 21.8 | 3.4 | 14.8 | 18.2 | 3.6 |
Mode | Low-Income Users (%) | High-Income Users (%) | ||||
Survey Result | Model Result | Bias Value | Survey Result | Model Result | Bias Value | |
Electric bicycle | 33.5 | 35.3 | 1.8 | 28.8 | 23.6 | 5.2 |
Bus | 21.2 | 26.1 | 4.9 | 16.9 | 18.6 | 1.7 |
Subway | 29.2 | 26.5 | 2.7 | 38.1 | 36.3 | 1.8 |
Private car | 16.1 | 12.1 | 4.0 | 16.2 | 21.5 | 5.3 |
Mode | Users Own Private Cars (%) | Users Do Not Own Private Cars (%) | ||||
Survey Result | Model Result | Bias Value | Survey Result | Model Result | Bias Value | |
Electric bicycle | 26.3 | 23.0 | 3.3 | 35.4 | 40.2 | 4.8 |
Bus | 16.9 | 14.1 | 4.8 | 21.2 | 19.8 | 1.4 |
Subway | 21.9 | 25.3 | 3.4 | 41.5 | 36.5 | 4.0 |
Private car | 34.9 | 37.6 | 2.7 | 1.9 | 3.5 | 1.6 |
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Xin, F.; Chen, Y.; Ye, Y. Understanding Electric Bicycle Users’ Mode Choice Preference under Uncertainty: A Case Study of Shanghai. Sustainability 2022, 14, 925. https://doi.org/10.3390/su14020925
Xin F, Chen Y, Ye Y. Understanding Electric Bicycle Users’ Mode Choice Preference under Uncertainty: A Case Study of Shanghai. Sustainability. 2022; 14(2):925. https://doi.org/10.3390/su14020925
Chicago/Turabian StyleXin, Feifei, Yifan Chen, and Yitong Ye. 2022. "Understanding Electric Bicycle Users’ Mode Choice Preference under Uncertainty: A Case Study of Shanghai" Sustainability 14, no. 2: 925. https://doi.org/10.3390/su14020925
APA StyleXin, F., Chen, Y., & Ye, Y. (2022). Understanding Electric Bicycle Users’ Mode Choice Preference under Uncertainty: A Case Study of Shanghai. Sustainability, 14(2), 925. https://doi.org/10.3390/su14020925